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Data aggregation at the level of molecular pathways improves stability of experimental transcriptomic and proteomic data

Authors :
Borisov, Nicolas
Suntsova, Maria
Sorokin, Maxim
Garazha, Andrew
Kovalchuk, Olga
Aliper, Alexander
Ilnitskaya, Elena
Lezhnina, Ksenia
Korzinkin, Mikhail
Tkachev, Victor
Saenko, Vyacheslav
Saenko, Yury
Sokov, Dmitry G.
Gaifullin, Nurshat M.
Kashintsev, Kirill
Shirokorad, Valery
Shabalina, Irina
Zhavoronkov, Alex
Mishra, Bhubaneswar
Cantor, Charles R.
Buzdin, Anton
Source :
Cell Cycle; October 2017, Vol. 16 Issue: 19 p1810-1823, 14p
Publication Year :
2017

Abstract

ABSTRACTHigh throughput technologies opened a new era in biomedicine by enabling massive analysis of gene expression at both RNA and protein levels. Unfortunately, expression data obtained in different experiments are often poorly compatible, even for the same biologic samples. Here, using experimental and bioinformatic investigation of major experimental platforms, we show that aggregation of gene expression data at the level of molecular pathways helps to diminish cross- and intra-platform bias otherwise clearly seen at the level of individual genes. We created a mathematical model of cumulative suppression of data variation that predicts the ideal parameters and the optimal size of a molecular pathway. We compared the abilities to aggregate experimental molecular data for the 5 alternative methods, also evaluated by their capacity to retain meaningful features of biologic samples. The bioinformatic method OncoFinder showed optimal performance in both tests and should be very useful for future cross-platform data analyses.

Details

Language :
English
ISSN :
15384101 and 15514005
Volume :
16
Issue :
19
Database :
Supplemental Index
Journal :
Cell Cycle
Publication Type :
Periodical
Accession number :
ejs43382085
Full Text :
https://doi.org/10.1080/15384101.2017.1361068